基于qos驱动的COVID-19错误信息检测的隐私感知分布式知识图方法

Lanyu Shang, Ziyi Kou, Yang Zhang, Jin Chen, Dong Wang
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引用次数: 6

摘要

本文以社交媒体新冠肺炎相关信息的信息服务质量为研究对象。我们的目标是通过挖掘来自不同社交媒体平台的社区贡献的COVID-19事实数据(CCFD),准确发现社交媒体上的误导性COVID-19帖子,提供可靠的COVID-19信息服务。其中,CCFD指的是各社交媒体平台的用户和事实核查专业人员提交给各社交媒体平台的事实核查报告。我们的工作动机是观察到CCFD通常包含有用的COVID-19知识事实(例如,“COVID-19不是流感”),可以有效地促进识别误导性的COVID-19社交媒体帖子。然而,由于CCFD的数据版权和CCFD贡献者的用户资料信息等数据隐私问题,CCFD通常对拥有它的个人社交媒体平台是私有的。在本文中,我们利用来自不同社交媒体平台的CCFD来准确检测covid - 19错误信息,同时有效保护CCFD的隐私。在解决我们的问题时存在两个关键挑战:1)如何从特定于平台的CCFD生成具有隐私意识的COVID-19知识事实?2)如何有效整合来自不同社交媒体平台的具有隐私意识的新冠肺炎知识事实,以正确评估新冠肺炎帖子的真实性?为了应对这些挑战,我们开发了COVID-19分布式知识图谱框架covid - kg,该框架在单个社交媒体平台上构建了一套基于ccfd的知识图谱,并在不同平台之间交换具有隐私意识的COVID-19知识事实,以有效检测误导性的COVID-19帖子。我们在两个真实的社交媒体数据集上对covid - kg进行了评估,结果表明,与最先进的基线相比,covid - kg在准确检测社交媒体上误导性的COVID-19帖子方面取得了显着的性能提升。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Privacy-aware Distributed Knowledge Graph Approach to QoIS-driven COVID-19 Misinformation Detection
In this paper, we focus on the quality of information service (QoIS) of COVID-19-related information on social media. Our goal is to provide reliable COVID-19 information service by accurately detecting the misleading COVID-19 posts on social media by exploring the community-contributed COVID-19 fact data (CCFD) from different social media platforms. In particular, CCFD refers to the fact-checking reports that are submitted to each social media platform by its users and fact-checking professionals. Our work is motivated by the observation that CCFD often contains useful COVID-19 knowledge facts (e.g., "COVID-19 is not a flu") that can effectively facilitate the identification of misleading COVID-19 social media posts. However, CCFD is often private to the individual social media platform that owns it due to the data privacy concerns such as data copyright of CCFD and user profile information of CCFD contributors. In this paper, we leverage the CCFD from different social media platforms to accurately detect COVID19 misinformation while effectively protecting the privacy of CCFD. Two critical challenges exist in solving our problem: 1) how to generate privacy-aware COVID-19 knowledge facts from the platform-specific CCFD? 2) How to effectively integrate the privacy-aware COVID-19 knowledge facts from different social media platforms to correctly assess the truthfulness of a COVID19 post? To address these challenges, we develop CoviDKG, a COVID-19 distributed knowledge graph framework that constructs a set of CCFD-based knowledge graphs on individual social media platform and exchanges the privacy-aware COVID19 knowledge facts across different platforms to effectively detect misleading COVID-19 posts. We evaluate CoviDKG on two real-world social media datasets and the results show that CoviDKG achieves significant performance gains compared to state-of-the-art baselines in accurately detecting misleading COVID-19 posts on social media.
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